Christopher Weyant, Serin Lee, Jason R Andrews, Fernando Alarid-Escudero, Jeremy D Goldhaber-Fiebert
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引用次数: 0
Abstract
Background: Historically, correctional facilities have had large outbreaks of respiratory infectious diseases like COVID-19. Hence, importation and exportation of such diseases from correctional facilities raises substantial concern.
Methods: We developed a stochastic simulation model of transmission of respiratory infectious diseases within and between correctional facilities and the community. We investigated the infection dynamics, key governing factors, and relative importance of different infection routes (e.g., incarcerations and releases versus correctional staff). We also developed machine-learning meta-models of the simulation model, which allowed us to examine how our findings depended on different disease, correctional facility, and community characteristics.
Results: We find a magnification-reflection dynamic: a small outbreak in the community can cause a larger outbreak in the correction facility, which can then cause a second, larger outbreak in the community. This dynamic is strongest when community size is relatively small as compared with the size of the correctional population, the initial community R-effective is near 1, and initial prevalence of immunity in the correctional population is low. The timing of the correctional magnification and community reflection peaks in infection prevalence are primarily governed by the initial R-effective for each setting. Because the release rates from prisons are low, our model suggests correctional staff may be a more important infection entry route into prisons than incarcerations and releases; in jails, where incarceration and release rates are much higher, our model suggests the opposite.
Conclusions: We find that across many combinations of respiratory pathogens, correctional settings, and communities, there can be substantial magnification-reflection dynamics, which are governed by several key factors. Our goal was to derive theoretical insights relevant to many contexts; our findings should be interpreted accordingly.
Highlights: We find a magnification-reflection dynamic: a small outbreak in a community can cause a larger outbreak in a correctional facility, which can then cause a second, larger outbreak in the community.For public health decision makers considering contexts most susceptible to this dynamic, we find that the dynamic is strongest when the community size is relatively small, initial community R-effective is near 1, and the initial prevalence of immunity in the correctional population is low; the timing of the correctional magnification and community reflection peaks in infection prevalence are primarily governed by the initial R-effective for each setting.We find that correctional staff may be a more important infection entry route into prisons than incarcerations and releases; however, for jails, the relative importance of the entry routes may be reversed.For modelers, we combine simulation modeling, machine-learning meta-modeling, and interpretable machine learning to examine how our findings depend on different disease, correctional facility, and community characteristics; we find they are generally robust.
背景:历史上,惩教机构曾大规模爆发过 COVID-19 等呼吸道传染病。因此,此类疾病从惩教机构的输入和输出引起了人们的极大关注:我们建立了一个呼吸道传染病在惩教机构内部以及惩教机构与社区之间传播的随机模拟模型。我们研究了感染动态、关键影响因素以及不同感染途径(如监禁和释放与管教人员)的相对重要性。我们还开发了模拟模型的机器学习元模型,这使我们能够研究我们的发现如何取决于不同的疾病、惩教机构和社区特征:我们发现了一种放大-反射动态:社区中的小规模疫情会导致惩教机构中更大规模的疫情爆发,而惩教机构又会导致社区中第二次更大规模的疫情爆发。当社区规模相对于矫正人群规模较小、社区初始 R 效应接近 1 且矫正人群初始免疫流行率较低时,这种态势最为明显。感染率的矫正放大峰和社区反射峰的时间主要取决于每种环境的初始 R-效应。由于监狱的释放率很低,我们的模型表明,与监禁和释放相比,管教人员可能是进入监狱的更重要的感染途径;而在监禁和释放率更高的监狱中,我们的模型表明情况恰恰相反:我们发现,在呼吸道病原体、管教环境和社区的多种组合中,可能存在着大量的放大-反射动态,而这又受几个关键因素的制约。我们的目标是得出与多种情况相关的理论见解;我们的发现也应相应地加以解释:我们发现了一种放大-反射动态:社区中的小规模疫情会导致惩教机构中更大规模的疫情爆发,而惩教机构又会导致社区中第二次更大规模的疫情爆发。对于考虑最易受这种动态影响的环境的公共卫生决策者来说,我们发现,当社区规模相对较小、社区初始 R 效应接近 1,以及矫治人群的初始免疫流行率较低时,这种动态影响最大;矫治放大和社区反射感染流行高峰的时间主要受每种环境的初始 R 效应的影响。我们发现,与监禁和释放相比,管教人员可能是进入监狱的更重要的感染途径;然而,对于监狱来说,进入途径的相对重要性可能正好相反。对于建模者来说,我们将模拟建模、机器学习元建模和可解释的机器学习结合起来,以检验我们的发现如何依赖于不同的疾病、管教设施和社区特征;我们发现这些发现总体上是稳健的。
期刊介绍:
Medical Decision Making offers rigorous and systematic approaches to decision making that are designed to improve the health and clinical care of individuals and to assist with health care policy development. Using the fundamentals of decision analysis and theory, economic evaluation, and evidence based quality assessment, Medical Decision Making presents both theoretical and practical statistical and modeling techniques and methods from a variety of disciplines.